TY - GEN
T1 - eVQ-AM: An Extended Dynamic Version of Evolving Vector Quantization
AU - Lughofer, Edwin
PY - 2013
Y1 - 2013
N2 - In this paper, we are presenting a new dynamically
evolving clustering approach which extends conventional
evolving Vector Quantization (eVQ), successfully applied before
as fast learning engine for evolving cluster models, classifiers
and evolving fuzzy systems in various real-world applications.
The first extension concerns the ability to extract ellipsoidal
prototype-based clusters in arbitrary position, thus increasing its
flexibility to model any orentiation/rotation of local data clouds.
The second extension includes a single-pass merging strategy
in order to resolve unnecessary overlaps or to dynamically
compensate inappropriately chosen learning parameters (which
may lead to over-clustering effects). The new approach, termed as
eVQ-AM (eVQ for Arbitrary ellipsoids with Merging functionality),
is compared with conventional eVQ, other incremental and batch
learning clustering methods based on two-dimensional as well
as high-dimensional streaming clustering showing an evolving
behavior in terms of adding/joining clusters as well as feature
range expansions. The comparison includes a sensitivity analysis
on the learning parameters and observations of finally achieved
cluster partition qualities
AB - In this paper, we are presenting a new dynamically
evolving clustering approach which extends conventional
evolving Vector Quantization (eVQ), successfully applied before
as fast learning engine for evolving cluster models, classifiers
and evolving fuzzy systems in various real-world applications.
The first extension concerns the ability to extract ellipsoidal
prototype-based clusters in arbitrary position, thus increasing its
flexibility to model any orentiation/rotation of local data clouds.
The second extension includes a single-pass merging strategy
in order to resolve unnecessary overlaps or to dynamically
compensate inappropriately chosen learning parameters (which
may lead to over-clustering effects). The new approach, termed as
eVQ-AM (eVQ for Arbitrary ellipsoids with Merging functionality),
is compared with conventional eVQ, other incremental and batch
learning clustering methods based on two-dimensional as well
as high-dimensional streaming clustering showing an evolving
behavior in terms of adding/joining clusters as well as feature
range expansions. The comparison includes a sensitivity analysis
on the learning parameters and observations of finally achieved
cluster partition qualities
UR - https://www.scopus.com/pages/publications/84885223889
U2 - 10.1109/EAIS.2013.6604103
DO - 10.1109/EAIS.2013.6604103
M3 - Conference proceedings
SN - 9781467358552
T3 - IEEE SSCI 2013 Conference
SP - 40
EP - 47
BT - Proceedings of the IEEE SSCI 2013 Conference
PB - IEEE
ER -